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Related Concept Videos

Genome-wide Association Studies-GWAS01:11

Genome-wide Association Studies-GWAS

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Genome-wide association studies or GWAS are used to identify whether common SNPs are associated with certain diseases. Suppose specific SNPs are more frequently observed in individuals with a particular disease than those without the disease. In that case, those SNPs are said to be associated with the disease. Chi-square analysis is performed to check the probability of the allele likely to be associated with the disease.
GWAS does not require the identification of the target gene involved in...
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Updated: Sep 18, 2025

Heuristic Mining of Hierarchical Genotypes and Accessory Genome Loci in Bacterial Populations
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ProHap Explorer: Visualizing Haplotypes in Proteogenomic Datasets.

Jakub Vasicek, Dafni Skiadopoulou, Ksenia G Kuznetsova

    IEEE Computer Graphics and Applications
    |June 20, 2025
    PubMed
    Summary
    This summary is machine-generated.

    ProHap Explorer visualizes how genetic variations (haplotypes) impact human proteins, revealing non-canonical peptides in mass spectrometry data. This tool aids personalized medicine by exploring proteogenomic variation.

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    Area of Science:

    • Proteomics
    • Genomics
    • Bioinformatics

    Background:

    • Mass spectrometry-based proteomics typically uses single reference sequences, ignoring haplotype influences.
    • Haplotypes, combinations of inherited genetic variants, can alter protein sequences and their detection.
    • Existing tools do not adequately visualize the impact of common haplotypes on proteomic data.

    Purpose of the Study:

    • To introduce ProHap Explorer, a novel visualization interface for exploring haplotype effects on the human proteome.
    • To enable users to investigate how common haplotypes influence protein sequences and identify non-canonical peptides.
    • To support the analysis of proteogenomic variation in mass spectrometry datasets.

    Main Methods:

    • Development of ProHap Explorer, a user-friendly interface for visualizing proteogenomic data.
    • Integration of established biological sequence analysis representations with interactive elements.
    • Testing and validation through user interviews with proteomics experts.

    Main Results:

    • ProHap Explorer facilitates the exploration of haplotypes and their impact on protein sequences.
    • The tool aids in identifying non-canonical peptides in public mass spectrometry datasets.
    • User feedback confirmed the utility of ProHap Explorer in assessing haplotype effects on proteins of interest.

    Conclusions:

    • ProHap Explorer provides an intuitive platform for exploring proteogenomic variation.
    • The tool enhances the understanding of haplotype influences in mass spectrometry-based proteomics.
    • ProHap Explorer supports advancements in personalized medicine and targeted therapy development.